Wu Jiunn-Lin, Ho Chung-Ru, Huang Chia-Ching, Srivastav Arun Lal, Tzeng Jing-Hua, Lin Yao-Tung
Department of Computer Science and Engineering, National Chung Hsing University, 250 Kuo Kuang Rd., Taichung 402, Taiwan.
Department of Marine Environmental Informatics, National Taiwan Ocean University, 2 Pei-Ning Rd., Keelung 202, Taiwan.
Sensors (Basel). 2014 Nov 28;14(12):22670-88. doi: 10.3390/s141222670.
Total suspended solid (TSS) is an important water quality parameter. This study was conducted to test the feasibility of the band combination of hyperspectral sensing for inland turbid water monitoring in Taiwan. The field spectral reflectance in the Wu river basin of Taiwan was measured with a spectroradiometer; the water samples were collected from the different sites of the Wu river basin and some water quality parameters were analyzed on the sites (in situ) as well as brought to the laboratory for further analysis. To obtain the data set for this study, 160 in situ sample observations were carried out during campaigns from August to December, 2005. The water quality results were correlated with the reflectivity to determine the spectral characteristics and their relationship with turbidity and TSS. Furthermore, multiple-regression (MR) and artificial neural network (ANN) were used to model the transformation function between TSS concentration and turbidity levels of stream water, and the radiance measured by the spectroradiometer. The value of the turbidity and TSS correlation coefficient was 0.766, which implies that turbidity is significantly related to TSS in the Wu river basin. The results indicated that TSS and turbidity are positively correlated in a significant way across the entire spectrum, when TSS concentration and turbidity levels were under 800 mg·L(-1) and 600 NTU, respectively. Optimal wavelengths for the measurements of TSS and turbidity are found in the 700 and 900 nm range, respectively. Based on the results, better accuracy was obtained only when the ranges of turbidity and TSS concentration were less than 800 mg·L(-1) and less than 600 NTU, respectively and used rather than using whole dataset (R(2) = 0.93 versus 0.88 for turbidity and R(2) = 0.83 versus 0.58 for TSS). On the other hand, the ANN approach can improve the TSS retrieval using MR. The accuracy of TSS estimation applying ANN (R(2) = 0.66) was better than with the MR approach (R(2) = 0.58), as expected due to the nonlinear nature of the transformation model.
总悬浮固体(TSS)是一项重要的水质参数。本研究旨在测试高光谱传感波段组合用于台湾内陆浑浊水体监测的可行性。利用光谱辐射仪测量了台湾乌溪流域的野外光谱反射率;从乌溪流域不同地点采集水样,并在现场(原位)分析了一些水质参数,同时将水样带回实验室进行进一步分析。为获取本研究的数据集,于2005年8月至12月的采样活动期间进行了160次原位样本观测。将水质结果与反射率进行关联,以确定光谱特征及其与浊度和总悬浮固体的关系。此外,运用多元回归(MR)和人工神经网络(ANN)对溪流水体中总悬浮固体浓度与浊度水平以及光谱辐射仪测量的辐射率之间的转换函数进行建模。浊度与总悬浮固体的相关系数值为0.766,这表明在乌溪流域浊度与总悬浮固体显著相关。结果表明,当总悬浮固体浓度和浊度水平分别低于800 mg·L⁻¹和600 NTU时,在整个光谱范围内总悬浮固体与浊度呈显著正相关。发现测量总悬浮固体和浊度的最佳波长分别在700和900 nm范围内。基于这些结果,仅当浊度和总悬浮固体浓度范围分别小于800 mg·L⁻¹和小于600 NTU时使用,而非使用整个数据集时,能获得更高的精度(浊度的R² = 0.93对0.88,总悬浮固体的R² = 0.83对0.58)。另一方面,人工神经网络方法可利用多元回归改进总悬浮固体的反演。正如由于转换模型的非线性性质所预期的那样,应用人工神经网络估算总悬浮固体的精度(R² = 0.66)优于多元回归方法(R² = 0.58)。